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Dynamic ant colony optimisation

机译:动态蚁群优化

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Ant Colony optimisation has proved suitable to solve static optimisation problems, that is problems that do not change with time. However in the real world changing circumstances may mean that a previously optimum solution becomes suboptimal. This paper explores the ability of the ant colony optimisation algorithm to adapt from the optimum solution for one set of circumstances to the optimal solution for another set of circumstances. Results are given for a preliminary investigation based on the classical travelling salesman problem. It is concluded that, for this problem at least, the time taken for the solution adaption process is far shorter than the time taken to find the second optimum solution if the whole process is started over from scratch.
机译:事实证明,蚁群优化适合解决静态优化问题,即不会随时间变化的问题。但是,在现实世界中,变化的环境可能意味着以前的最佳解决方案变得次优。本文探讨了蚁群优化算法从一组情况的最优解到另一组情况的最优解的适应能力。结果给出了基于经典旅行商问题的初步调查。得出的结论是,至少对于这个问题,解决方案适应过程所花费的时间远远少于如果从头开始进行整个过程时找到第二个最佳解决方案所花费的时间。

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